17 research outputs found

    Stochastic Weight Matrix-based Regularization Methods for Deep Neural Networks

    Get PDF
    The aim of this paper is to introduce two widely applicable regularization methods based on the direct modification of weight matrices. The first method, Weight Reinitialization, utilizes a simplified Bayesian assumption with partially resetting a sparse subset of the parameters. The second one, Weight Shuffling, introduces an entropy- and weight distribution-invariant non-white noise to the parameters. The latter can also be interpreted as an ensemble approach. The proposed methods are evaluated on benchmark datasets, such as MNIST, CIFAR-10 or the JSB Chorales database, and also on time series modeling masks. We report gains both regarding performance and entropy of the analyzed networks. We also made our code available as a GitHub repository

    Hierarchically Structured Recommender System for Improving NPS of a Company

    No full text

    Mining Surgical Meta-actions Effects with Variable Diagnoses’ Number

    No full text

    Meta-actions as a Tool for Action Rules Evaluation

    No full text

    Theory of computing systems

    No full text

    Action Rules Discovery Based on Tree Classifiers and Meta-actions

    No full text
    Action rules describe possible transitions of objects from one state to another with respect to a distinguished attribute. Early research on action rule discovery usually required the extraction of classification rules before constructing any action rule. Newest algorithms discover action rules directly from a decision system. To our knowledge, all these algorithms assume that all attributes are symbolic or require prior discretization of all numerical attributes. This paper presents a new approach for generating action rules from datasets with numerical attributes by incorporating a tree classifier and a pruning step based on metaactions. Meta-actions are seen as a higher-level knowledge (provided by experts) about correlations between different attributes

    GA 2

    No full text

    Interestingness Measures for Actionable Patterns

    No full text
    corecore